SDCLASFeb 22, 2022

Improving Cross-lingual Speech Synthesis with Triplet Training Scheme

arXiv:2202.10729v1
Originality Incremental advance
AI Analysis

This addresses the challenge of generating natural-sounding foreign-language speech for monolingual speakers, though it is incremental as it builds on existing TTS systems.

The paper tackled the problem of poor pronunciation in cross-lingual speech synthesis by proposing a triplet training scheme, which improved intelligibility and naturalness in experiments.

Recent advances in cross-lingual text-to-speech (TTS) made it possible to synthesize speech in a language foreign to a monolingual speaker. However, there is still a large gap between the pronunciation of generated cross-lingual speech and that of native speakers in terms of naturalness and intelligibility. In this paper, a triplet training scheme is proposed to enhance the cross-lingual pronunciation by allowing previously unseen content and speaker combinations to be seen during training. Proposed method introduces an extra fine-tune stage with triplet loss during training, which efficiently draws the pronunciation of the synthesized foreign speech closer to those from the native anchor speaker, while preserving the non-native speaker's timbre. Experiments are conducted based on a state-of-the-art baseline cross-lingual TTS system and its enhanced variants. All the objective and subjective evaluations show the proposed method brings significant improvement in both intelligibility and naturalness of the synthesized cross-lingual speech.

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